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Causal Inference Library for Lift Measurement

Project description

RealLift

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Causal Inference Framework for Geo Experiments & Marketing Science

RealLift is an advanced Python library engineered to measure the true incremental impact (Lift) of marketing interventions through rigorous Causal Inference, Synthetic Control methodologies, and Robust Significance Testing.


Framework Pillars

RealLift is built upon three layers of defense against noise and volatility:

  1. Auditable Planning (Design of Experiments): Algorithmically identifies the optimal geographic clusters and projects statistical power (MDE) prior to any campaign investment.
  2. Causal Inference (Synthetic Control): Formulates robust counterfactuals via Convex Optimization with Intercept, ensuring behavioral alignment even across differing baseline levels.
  3. Confidence Validation (Placebo & Significance): Defends analytical conclusions through permutation tests based on the MSPE Ratio and non-parametric Bootstrap confidence intervals.

Installation

pip install reallift

Quick Start Guide

This end-to-end example demonstrates how to simulate geographic data, plan the optimal experiment design, inject a simulated marketing effect, and precisely measure the impact.

1. Generate Historical Data

Simulate daily performance for 27 candidate geos over a 90-day baseline.

from reallift import generate_geo_data

geo_data = generate_geo_data(
    start_date="2025-01-01",
    end_date="2025-03-31",
    n_geos=27,
    pre_only=True,
    trend_slope=0.01,
    seasonality_amplitude=3,
    seasonality_period=7,
    noise_std=[1, 1.5],
    base_value=[50, 100],
    random_seed=42,
    save_csv=True,
    pre_file_name="demo_geodata_pre_test.csv"
)

2. Design the Experiment (Pre-Test Phase)

Use the DoE pipeline to rigorously select the best treatment and control geometries based on historical correlations.

from reallift import design_of_experiments

doe = design_of_experiments(
    filepath="demo_geodata_pre_test.csv",
    date_col="date",
    start_date="2025-01-01",
    end_date="2025-03-31",
    pct_treatment=None,
    fixed_treatment=None,
    experiment_days=[21, 28, 30, 35, 60]
)

3. Inject Simulated Marketing Campaign

Simulate a 21-day campaign with an artificial lift applied strictly to the optimal treatment geos assigned in the DoE.

from reallift import generate_simulated_intervention

geo_data_intervention = generate_simulated_intervention(
    filepath="demo_geodata_pre_test.csv",
    days=21,
    treatment_geos=doe['scenarios'][1]['treatment_pool'],
    lift=[0.05, 0.10],
    trend_slope=0.01,
    seasonality_amplitude=3,
    seasonality_period=7,
    noise_std=[1, 1.5],
    random_seed=42,
    save_csv=True,
    as_integer=True,
    file_name="demo_geodata_post_test.csv"
)

4. Evaluate Incremental Impact (Post-Test Phase)

Measure the precise financial and percentual lift utilizing the Causal Inference engine against the final dataset.

from reallift import run_geo_experiment

results = run_geo_experiment(
    filepath="demo_geodata_post_test.csv",
    date_col="date",
    treatment_start_date="2025-04-01",
    treatment_end_date="2025-04-22",
    doe=doe, 
    scenario=1,
    plot=False
)

Technical Differentiators

  • SER Engine (Synthetic Error Ratio): Proactive volatility filtering during the design phase to eliminate "Zombie Controls."
  • Convex Intercept: Intelligent baseline shift absorption that preserves the interpretability of synthetic weights ($\sum w = 1$).
  • MSPE Ratio Strategy: A placebo methodology resilient to the natural variance of high-frequency volatile markets.
  • Operational Freedom: Aggressive donor curatorship via ElasticNet that often frees up to 50% of geographic regions for other commercial operations.

Systems & Dependencies

  • Mathematics: cvxpy, scipy, numpy
  • Data Engineering: pandas, scikit-learn
  • Visualization: matplotlib

Developed by Roberto Junior.

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